Over the last decade, numerous large-scale biomedical studies have helped catalog hundreds of genomic variants and physiological-clinical phenotypes associated with a range of complex traits and diseases. These catalogs are now exposing wide chasms in our understanding of the mechanistic relationships between genomic variation, cellular processes, tissue function, and trait variation ? knowledge that is crucial for advancing disease diagnosis and intervention. We develop and apply computational data-driven approaches to bridge these gaps and help resolve, understand, and tackle the heterogeneity of complex traits and diseases. We are specifically focusing on three key questions: 1) Each disease is not a single well-defined condition. Can we deconvolve complex disorders into subtypes defined by shared functional dysregulations, and characterize novel genes/mechanisms underlying each subtype? 2) Most diseases vary in prevalence and impact between males and females, and across life stages. Can we delineate the genomic basis of differences in tissue physiology and disease between sexes and across ages? 3) Choosing the right in vivo system to study human diseases is hard due to murky relationships between phenotypes/genes in humans and model species. Can we systematically identify functionally `analogous' genes, phenotypes, and conditions in model organisms for studying specific facets of complex traits/diseases? To address these critical questions across diseases, we will develop a suite of computational frameworks that integrate genomic data collections, fragmented prior knowledge, and individual-/population-level genotypes-phenotypes. We will use this approach to systematically unravel genomic signatures, pathways, and networks that help characterize mechanistic subtypes, age/sex biases, and cross-species analogs of a wide range of diseases. We have established collaborations for experimentally following-up our predictions for specific test cases including autism, gastrointestinal disorder, coronary artery disease, cardiomyopathies, abnormal pregnancy, and eating disorders. Together, this concerted effort will help us gain insights into the multi-scale mechanisms underlying heterogeneous traits and diseases. In the long-term, our frameworks and mechanistic insights will enable us to link an individual's genomic profiles to a precise assessment of her/his physiological traits, disease risks, and clinical outcomes.

Public Health Relevance

We are proposing to develop a suite of computational frameworks that integrate massive collections of genomic and biomedical data to unravel disease subtypes, age/sex biases, and cross-species analogs of a wide range of complex disorders. The methods and results from this project will help us gain insights into the multi-scale mechanisms underlying the heterogeneity of traits and diseases. In the long-term, our frameworks and mechanistic insights will enable us to link an individual's genomic profiles to a precise assessment of her/his physiological traits, disease risks, and clinical outcomes, and thus usher in the era of precision medicine.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Unknown (R35)
Project #
1R35GM128765-01
Application #
9575095
Study Section
Special Emphasis Panel (ZGM1)
Program Officer
Krasnewich, Donna M
Project Start
2018-08-15
Project End
2023-07-31
Budget Start
2018-08-15
Budget End
2019-07-31
Support Year
1
Fiscal Year
2018
Total Cost
Indirect Cost
Name
Michigan State University
Department
Biostatistics & Other Math Sci
Type
Schools of Arts and Sciences
DUNS #
193247145
City
East Lansing
State
MI
Country
United States
Zip Code
48824